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Spleen Stiffness Probability Index (SSPI): A simple and accurate method to detect esophageal varices in patients with compensated liver cirrhosis.

Authors :
Giuffrè, Mauro
Macor, Daniele
Masutti, Flora
Abazia, Cristiana
Tinè, Fabio
Bedogni, Giorgio
Tiribelli, Claudio
Crocè, Lory Saveria
Source :
Annals of Hepatology: Official Journal of the Mexican Association of Hepatology; Jan/Feb2020, Vol. 19 Issue 1, p53-61, 9p
Publication Year :
2020

Abstract

Intruduction and objectives: Recent findings pointed out that even low-risk esophageal varices (EVs) are markers of severe prognosis. Accordingly, we analyzed spleen stiffness (SS) as a non-invasive method to predict EVs of any grade in a cohort of patients with compensated liver cirrhosis. Method: We measured SS and liver stiffness (LS) using point-Shear-Wave Elastography (pSWE) with Philips Affiniti 70 system in 210 cirrhotic patients who had undergone endoscopic screening for EVs. We compared SS and LS predictive capability for EVs of any grade. Results: SS was higher in cirrhotic patients with EVs if compared to patients without EVs (p < 0.001). The cut-off analysis detected 31 kPa (100% sensitivity and negative predictive value) as the value to rule-out EVs and 69 kPa (100% specificity and positive predictive value) to rule-in EVs. Besides, we developed the Spleen Stiffness Probability Index (SSPI), that can provide a probability of presence/absence of EVs. SSPI was the best model according to all discriminative and calibration metrics (AIC = 120, BIC = 127, AUROC = 0.95, Pseudo-R2 = 0.74). SS demonstrated higher correlation with spleen bipolar diameter and spleen surface (r = 0.52/0.55) if compared to LS (r = 0.30/0.25) - and with platelet count as well (r = 0.67 vs r = 0.4). Conclusion: SS showed significantly higher performance than other parameters, proving to be the best non-invasive test in the screening of EVs: by directly applying SS cut-off of 31 kPa, our department could have safely avoided endoscopy in 36% of patients. Despite cut-off analyses, it was possible to create a probability model that could further stratify low-risk from high-risk patients (for any grade of EVs). [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
16652681
Volume :
19
Issue :
1
Database :
Complementary Index
Journal :
Annals of Hepatology: Official Journal of the Mexican Association of Hepatology
Publication Type :
Academic Journal
Accession number :
142610351
Full Text :
https://doi.org/10.1016/j.aohep.2019.09.004